Dynamic scenario simulation optimization

The optimization of parameter driven simulations has been the focus of many research papers. Algorithms like Hill Climbing, Tabu-Search and Simulated Annealing have been thoroughly discussed and analyzed. However, these algorithms do not take into account the fact that simulations can have dynamic s...

Full description

Bibliographic Details
Main Author: André Monteiro de Oliveira Restivo
Other Authors: Luis Paulo Reis
Format: Others
Language:Portuguese
Published: 2019
Subjects:
Online Access:https://repositorio-aberto.up.pt/handle/10216/6613
id ndltd-up.pt-oai-repositorio-aberto.up.pt-10216-6613
record_format oai_dc
spelling ndltd-up.pt-oai-repositorio-aberto.up.pt-10216-66132019-07-17T04:48:35Z Dynamic scenario simulation optimization André Monteiro de Oliveira Restivo Luis Paulo Reis Faculdade de Engenharia Inteligência artificial Artificial intelligence The optimization of parameter driven simulations has been the focus of many research papers. Algorithms like Hill Climbing, Tabu-Search and Simulated Annealing have been thoroughly discussed and analyzed. However, these algorithms do not take into account the fact that simulations can have dynamic scenarios.In this dissertation, the possibility of using the classical optimization methods just mentioned, combined with clustering techniques, in order to optimize parameter driven simulations having dynamic scenarios, will be analyzed.This will be accomplished by optimizing simulations in several random static scenarios. The optimum results of each of these optimizations will be clustered in order to find a set of typical solutions for the simulation. These typical solutions can then be used in dynamic scenario simulations as references that will help the simulation adapt to scenario changes.A generic optimization and clustering system was developed in order to test the method just described. A simple traffic simulation system, to be used as a testbed, was also developed.The results of this approach show that, in some cases, it is possible to improve the outcome of simulations in dynamic environments and still use the classical methods developed for static scenarios. 2019-02-08T20:50:38Z 2019-02-08T20:50:38Z 2006 Dissertação sigarra:25684 https://repositorio-aberto.up.pt/handle/10216/6613 por openAccess https://creativecommons.org/licenses/by-nc/4.0/ application/pdf
collection NDLTD
language Portuguese
format Others
sources NDLTD
topic Inteligência artificial
Artificial intelligence
spellingShingle Inteligência artificial
Artificial intelligence
André Monteiro de Oliveira Restivo
Dynamic scenario simulation optimization
description The optimization of parameter driven simulations has been the focus of many research papers. Algorithms like Hill Climbing, Tabu-Search and Simulated Annealing have been thoroughly discussed and analyzed. However, these algorithms do not take into account the fact that simulations can have dynamic scenarios.In this dissertation, the possibility of using the classical optimization methods just mentioned, combined with clustering techniques, in order to optimize parameter driven simulations having dynamic scenarios, will be analyzed.This will be accomplished by optimizing simulations in several random static scenarios. The optimum results of each of these optimizations will be clustered in order to find a set of typical solutions for the simulation. These typical solutions can then be used in dynamic scenario simulations as references that will help the simulation adapt to scenario changes.A generic optimization and clustering system was developed in order to test the method just described. A simple traffic simulation system, to be used as a testbed, was also developed.The results of this approach show that, in some cases, it is possible to improve the outcome of simulations in dynamic environments and still use the classical methods developed for static scenarios.
author2 Luis Paulo Reis
author_facet Luis Paulo Reis
André Monteiro de Oliveira Restivo
author André Monteiro de Oliveira Restivo
author_sort André Monteiro de Oliveira Restivo
title Dynamic scenario simulation optimization
title_short Dynamic scenario simulation optimization
title_full Dynamic scenario simulation optimization
title_fullStr Dynamic scenario simulation optimization
title_full_unstemmed Dynamic scenario simulation optimization
title_sort dynamic scenario simulation optimization
publishDate 2019
url https://repositorio-aberto.up.pt/handle/10216/6613
work_keys_str_mv AT andremonteirodeoliveirarestivo dynamicscenariosimulationoptimization
_version_ 1719224739732389888